Predicting quetiapine dose in patients with depression using machine learning techniques based on real-world evidence

被引:0
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作者
Yupei Hao
Jinyuan Zhang
Jing Yu
Ze Yu
Lin Yang
Xin Hao
Fei Gao
Chunhua Zhou
机构
[1] the First Hospital of Hebei Medical University,Department of Clinical Pharmacy
[2] The First Hospital of Hebei Medical University,The Technology Innovation Center for Artificial Intelligence in Clinical Pharmacy of Hebei Province
[3] Beijing Medicinovo Technology Co.,undefined
[4] Ltd,undefined
[5] Dalian Medicinovo Technology Co.,undefined
[6] Ltd,undefined
关键词
Quetiapine; Machine learning; Dose; Prediction model; Depression;
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